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Fast 6D object pose refinement in depth images

机译:快速的6d对象姿势细化深度图像

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摘要

Recovering 6D object pose has gained much focus, because of its application in robotic intelligent manipulation to name but a few. This paper presents an approach for 6D object pose refinement from noisy depth images obtained from a consumer depth sensor. Compared to the state of the art aimed at the same goal, the proposed method has high precision, high robustness to partial occlusions and noise, low computation cost and fast convergence. This is achieved by using an iterative scheme that only employs Random Forest to minimize a cost function of object pose which can quantify the misalignment between the ground truth and the estimated one. The random forest in our algorithm is learnt only using synthetic depth images rendered from 3D model of the object. Several experimental results show the superior performance of the proposed approach compared to ICP-based algorithm and optimization-based algorithm, which are generally used for 6D pose refinement in depth images. Moreover, the iterative process of our algorithm can be much faster than the state of the art by only using one CPU core.
机译:恢复6d对象姿势已经获得了很多焦点,因为它在机器人智能操作中的应用到名称但是几个。本文介绍了从消费深度传感器获得的嘈杂深度图像的6D对象姿势细化的方法。与瞄准相同目标的最先进的技术相比,该方法具有高精度,高稳健性,以部分闭塞和噪声,低计算成本和快速收敛。这是通过使用迭代方案来实现的,该方案仅采用随机森林来最小化对象姿势的成本函数,这可以量化地面真理和估计的一个的错位。我们算法中的随机森林仅使用从对象的3D模型呈现的综合深度图像学习。与基于ICP的算法和基于优化的算法相比,若干实验结果表明了该方法的优越性,该方法与基于ICP的算法相比,这通常用于深度图像中的6D姿势细化。此外,通过仅使用一个CPU核心,我们的算法的迭代过程可以比最先进的状态快得多。

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